Department of Public Health and Primary Care, KU Leuven, Campus KULAK, Etienne Sabbelaan 53, 8500, Kortrijk, Belgium.
ITEC - Imec and KU Leuven, Etienne Sabbelaan 51, 8500, Kortrijk, Belgium.
J Nephrol. 2022 Nov;35(8):2087-2095. doi: 10.1007/s40620-022-01323-y. Epub 2022 Apr 20.
Due to the existence of different AKI definitions, analyzing AKI incidence and associated outcomes is challenging. We investigated the incidence of AKI events defined by 4 different definitions (standard AKIN and KDIGO, and modified AKIN-4 and KDIGO-4) and its association with in-hospital mortality.
A total of 7242 adult Greek subjects were investigated. To find the association between AKI stages and in-hospital mortality, we considered both the number of AKI events and the most severe stage of AKI reached by each patient, adjusted for age, sex, and AKI staging, using multivariable logistic regression. To predict mortality in AKI patients, as defined by the four definitions, a classification task with two prediction models (random forest and logistic regression) was also conducted.
The incidence of AKI using the KDIGO-4 was 6.72% for stage 1a, 15.71% for stage 1b, 8.06% for stage2, and 2.97% for stage3; however, these percentages for AKIN-4 were 11%, 5.83%, 1.75%, and 0.33% for stage 1a, stage 1b, stage 2, and stage 3, respectively. Results showed KDIGO-4 is more sensitive in detecting AKI events. In-hospital mortality increased as the stage of AKI events increased for both KDIGO-4 and AKIN-4; however, KDIGO-4 (KDIGO) had a higher odds ratio at a higher stage of AKI compared to AKIN-4 (AKIN). Lastly, when using KDIGO, random forest and logistic regression models performed almost equally with a c-statistic of 0.825 and 0.854, respectively.
The present study confirms that within the KDIGO AKI stage 1, there are two sub-populations with different clinical outcomes (mortality).
由于 AKI 定义不同,分析 AKI 发生率和相关结局具有挑战性。我们研究了 4 种不同定义(标准 AKIN 和 KDIGO 以及改良 AKIN-4 和 KDIGO-4)定义的 AKI 事件发生率及其与院内死亡率的关系。
共调查了 7242 名成年希腊受试者。为了找到 AKI 分期与院内死亡率之间的关系,我们考虑了每个患者的 AKI 事件数量和达到的最严重 AKI 分期,同时考虑了年龄、性别和 AKIN 分期,使用多变量逻辑回归进行调整。为了预测 4 种定义定义的 AKI 患者的死亡率,还进行了分类任务,包括两个预测模型(随机森林和逻辑回归)。
KDIGO-4 定义的 1a 期 AKI 发生率为 6.72%,1b 期为 15.71%,2 期为 8.06%,3 期为 2.97%;然而,AKIN-4 的相应百分比为 11%、5.83%、1.75%和 0.33%,分别为 1a 期、1b 期、2 期和 3 期。结果表明,KDIGO-4 更能检测 AKI 事件。随着 AKI 事件分期的增加,院内死亡率也随之增加,对于 KDIGO-4 和 AKIN-4 均如此;然而,与 AKIN-4(AKIN)相比,KDIGO-4(KDIGO)在更高的 AKI 分期时具有更高的优势比。最后,在使用 KDIGO 时,随机森林和逻辑回归模型的表现几乎相同,C 统计量分别为 0.825 和 0.854。
本研究证实,在 KDIGO AKI 1 期内,存在两个具有不同临床结局(死亡率)的亚人群。